Online Signature Verification using Recurrent Neural Network and Length-normalized Path Signature

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Lai, Songxuan; Jin, Lianwen; Yang, Weixin;
(2017)
  • Subject: Computer Science - Computer Vision and Pattern Recognition

Inspired by the great success of recurrent neural networks (RNNs) in sequential modeling, we introduce a novel RNN system to improve the performance of online signature verification. The training objective is to directly minimize intra-class variations and to push the d... View more
  • References (26)
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